Author/Authors :
Singh، R. نويسنده , , Vishal، V. نويسنده , , Singh، T. N. نويسنده Indian Institute of Technology ,
Abstract :
The physico-mechanical properties of rocks and rockmass are decisive for the planning of
mining and civil engineering projects. The Schmidt hammer Rebound Number (RN), Slake Durability Index
(SDI), Uniaxial Compressive Strength (UCS), Impact Strength Index (ISI) and compressive wave velocity
(P-wave velocity) are important and pertinent properties to characterize rock mass, and are widely used
in geological, geotechnical, geophysical and petroleum engineering. The Schmidt hammer rebound can be
easily obtained on site and is a non-destructive test. The P-wave velocity and isotropic properties of rocks
characterize rock responses under varying stress conditions. Many statistics based empirical equations
have been proposed for the correlation between RN, SDI, UCS, ISI and P-wave velocity. The Artificial Neural
Network (ANN), Fuzzy Inference System (FIS) and neuro-fuzzy system are emerging techniques that have
been employed in recent years. So, in the present study, soft computing is applied to predict the P-wave
velocity. 85 data sets were used for training the network and 17 data sets for the testing and validation of
network rules. The network performance indices correlation coefficient, Mean Absolute Percentage Error
(MAPE), Root Mean Square Error (RMSE), and Variance Account For (VAF) are 0.9996, 0.744, 25.06 and
99.97, respectively, which demonstrates the high performance of the predictive capability of the neuro-
fuzzy system.